Lee Kong Chian School of Medicine, Nanyang Technological University, Singapore, Singapore.
Department of Human Centred Computing, Faculty of Information Technology, Monash University, Melbourne, Australia.
J Med Internet Res. 2023 May 17;25:e41671. doi: 10.2196/41671.
Digital education has expanded since the COVID-19 pandemic began. A substantial amount of recent data on how students learn has become available for learning analytics (LA). LA denotes the "measurement, collection, analysis, and reporting of data about learners and their contexts, for purposes of understanding and optimizing learning and the environments in which it occurs."
This scoping review aimed to examine the use of LA in health care professions education and propose a framework for the LA life cycle.
We performed a comprehensive literature search of 10 databases: MEDLINE, Embase, Web of Science, ERIC, Cochrane Library, PsycINFO, CINAHL, ICTP, Scopus, and IEEE Explore. In total, 6 reviewers worked in pairs and performed title, abstract, and full-text screening. We resolved disagreements on study selection by consensus and discussion with other reviewers. We included papers if they met the following criteria: papers on health care professions education, papers on digital education, and papers that collected LA data from any type of digital education platform.
We retrieved 1238 papers, of which 65 met the inclusion criteria. From those papers, we extracted some typical characteristics of the LA process and proposed a framework for the LA life cycle, including digital education content creation, data collection, data analytics, and the purposes of LA. Assignment materials were the most popular type of digital education content (47/65, 72%), whereas the most commonly collected data types were the number of connections to the learning materials (53/65, 82%). Descriptive statistics was mostly used in data analytics in 89% (58/65) of studies. Finally, among the purposes for LA, understanding learners' interactions with the digital education platform was cited most often in 86% (56/65) of papers and understanding the relationship between interactions and student performance was cited in 63% (41/65) of papers. Far less common were the purposes of optimizing learning: the provision of at-risk intervention, feedback, and adaptive learning was found in 11, 5, and 3 papers, respectively.
We identified gaps for each of the 4 components of the LA life cycle, with the lack of an iterative approach while designing courses for health care professions being the most prevalent. We identified only 1 instance in which the authors used knowledge from a previous course to improve the next course. Only 2 studies reported that LA was used to detect at-risk students during the course's run, compared with the overwhelming majority of other studies in which data analysis was performed only after the course was completed.
自 COVID-19 大流行开始以来,数字教育已经得到了扩展。最近有大量关于学生如何学习的信息可用于学习分析(LA)。LA 是指“对学习者及其背景的数据进行测量、收集、分析和报告,目的是理解和优化学习及其发生的环境。”
本范围综述旨在考察 LA 在医疗保健专业教育中的应用,并提出 LA 生命周期框架。
我们对 10 个数据库进行了全面的文献检索:MEDLINE、Embase、Web of Science、ERIC、Cochrane 图书馆、PsycINFO、CINAHL、ICTP、Scopus 和 IEEE Explore。共有 6 名评审员成对工作,并进行了标题、摘要和全文筛选。我们通过共识和与其他评审员的讨论解决了研究选择方面的分歧。如果符合以下标准,我们就会纳入论文:医疗保健专业教育相关论文、数字教育相关论文、以及从任何类型的数字教育平台收集 LA 数据的论文。
我们共检索到 1238 篇论文,其中 65 篇符合纳入标准。从这些论文中,我们提取了 LA 过程的一些典型特征,并提出了 LA 生命周期框架,包括数字教育内容创作、数据收集、数据分析以及 LA 的目的。作业材料是最受欢迎的数字教育内容类型(47/65,72%),而最常收集的数据类型是与学习材料的连接次数(53/65,82%)。在 89%(58/65)的研究中,描述性统计分析在数据分析中被广泛使用。最后,在 LA 的目的中,理解学习者与数字教育平台的交互在 86%(56/65)的论文中被引用最多,理解交互与学生表现之间的关系在 63%(41/65)的论文中被引用。优化学习的目的则相对较少:只有 11%、5%和 3%的论文分别提到了提供高危干预、反馈和自适应学习。
我们确定了 LA 生命周期的 4 个组成部分中的每一个部分都存在差距,其中最普遍的是在为医疗保健专业设计课程时缺乏迭代方法。我们只发现了 1 个作者在课程设计中使用了前一个课程的知识来改进下一个课程的实例。只有 2 项研究报告说,在课程运行期间,LA 用于检测高危学生,而绝大多数其他研究则只是在课程结束后才进行数据分析。